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Landmine detection using ensemble discrete hidden Markov models with context dependent training methods

机译:使用整体离散隐马尔可夫模型和上下文相关训练方法进行地雷探测

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We propose a landmine detection algorithm that uses ensemble discrete hidden Markov models with context dependent training schemes. We hypothesize that the data are generated by K models. These different models reflect the fact that mines and clutter objects have different characteristics depending on the mine type, soil and weather conditions, and burial depth. Model identification is based on clustering in the log-likelihood space. First, one HMM is fit to each of the N individual sequence. For each fitted model, we evaluate the log-likelihood of each sequence. This will result in an N x N log-likelihood distance matrix that will be partitioned into K groups. In the second step, we learn the parameters of one discrete HMM per group. We propose using and optimizing various training approaches for the different K groups depending on their size and homogeneity. In particular, we will investigate the maximum likelihood, and the MCE-based discriminative training approaches. Results on large and diverse Ground Penetrating Radar data collections show that the proposed method can identify meaningful and coherent HMM models that describe different properties of the data. Each HMM models a group of alarm signatures that share common attributes such as clutter, mine type, and burial depth. Our initial experiments have also indicated that the proposed mixture model outperform the baseline HMM that uses one model for the mine and one model for the background.
机译:我们提出了一种地雷检测算法,该算法使用整体离散隐马尔可夫模型和上下文相关训练方案。我们假设数据是由K个模型生成的。这些不同的模型反映了这样一个事实,即地雷和杂物具有不同的特征,这取决于地雷类型,土壤和天气条件以及埋葬深度。模型识别基于对数似然空间中的聚类。首先,一个HMM适合N个单独序列中的每个序列。对于每个拟合模型,我们评估每个序列的对数似然性。这将产生一个N x N对数似然距离矩阵,该矩阵将被划分为K个组。第二步,我们学习每组一个离散HMM的参数。我们建议根据不同的K组的大小和同质性来使用和优化各种训练方法。特别是,我们将研究最大可能性,以及基于MCE的判别训练方法。对大量不同类型的探地雷达数据收集的结果表明,所提出的方法可以识别描述数据不同属性的有意义且连贯的HMM模型。每个HMM都对一组警报签名进行建模,这些签名具有共同的属性,例如混乱,地雷类型和埋葬深度。我们的初步实验还表明,提出的混合模型优于基线HMM,后者使用一种模型作为矿井,使用一种模型作为背景。

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